首页> 外文期刊>Journal of Applied Remote Sensing >Comparison between pixel- and object-based image classification of a tropical landscape using Systeme Pour l'Observation de la Terre-5 imagery
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Comparison between pixel- and object-based image classification of a tropical landscape using Systeme Pour l'Observation de la Terre-5 imagery

机译:使用Systeme Pour l'Observation de la Terre-5影像比较热带景观的基于像素和基于对象的图像分类

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摘要

Based on the Systeme Pour l'Observation de la Terre-5 imagery, two main techniques of classifying land-use categories in a tropical landscape are compared using two supervised algorithms: maximum likelihood classifier (MLC) and K-nearest neighbor object-based classifier. Nine combinations of scale level (SL10, SL30, and SL50) and the nearest neighbor (NN3, NN5, and NN7) are investigated in the object-based classification. Accuracy assessment is performed using two main disagreement components, i.e., quantity disagreement and allocation disagreement. The MLC results in a higher total disagreement in total landscape as compared with object-based image classification. The SL30-NN5 object-based classifier reduces allocation error by 250% as compared with the MLC. Therefore, this classifier shows a higher performance in land-use classification of the Langat basin.
机译:基于Systeme Pour l'Observation de la Terre-5影像,使用两种监督算法比较了对热带景观中土地利用类别进行分类的两种主要技术:最大似然分类器(MLC)和K近邻基于对象的分类器。在基于对象的分类中,研究了九个比例级别组合(SL10,SL30和SL50)和最近的邻居(NN3,NN5和NN7)。准确性评估是使用两个主要的争议成分进行的,即数量争议和分配争议。与基于对象的图像分类相比,MLC导致总体景观的总体差异更大。与MLC相比,SL30-NN5基于对象的分类器可将分配错误减少250%。因此,该分类器在Langat盆地的土地利用分类中显示出更高的性能。

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